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smartembed's Issues

node definition

Sorry to bother you, in your paper, you have mentioned 308 node types,but how can we know this?Does 308 mean ast node types or solidity grammar rules?

Models Incompatible with Gensim-3.8.x and later

I am trying to run your tool to try it out, but I am running into an issue with gensim when I try to run the app in todo/app.pyโ€‹. My gemsim package version is gemsim-3.2.0, and I get this error:

TypeError: Pre-gensim-3.8.x fastText models with nonstandard hashing are no longer compatible. Loading your old model into gensim-3.8.3 & re-saving may create a model compatible with gensim 4.x.

It looks like your pre-trained models used an older version of gemsim. I tried rolling back my gemsim version but then I just run into other compatibility issues. Have you given any though to trying to update your pre-trained models to work with the latest version of gemsim? Or do you have any other suggestions about how to get around this issue?

Function level tokenizer

Hi, great repo. Could you share the Normalizer and Java Parser code for function_level to regenerate token list similar to your function_normalized_tokens and function_tokens in the original processed dataset ?

build and run locally

I have download the pretrained models and put them in the right directories, however when try to run the program as the procedures in README.md, I failed when I run the command python app.py. I find maybe becuase of the inconsistent of python versions, I want to know the solution of this.

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